多时相多光谱卫星图像的无监督变化检测:一种凸松弛方法

Wei-Cheng Zheng, Chia-Hsiang Lin, K. Tseng, Chih-Yuan Huang, T. Lin, Chia-Hsiang Wang, Chong-Yung Chi
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引用次数: 6

摘要

利用多时相多光谱卫星图像实现的变化检测(CD)具有许多重要的地球观测任务,如土地覆盖/利用监测,我们观察到变化区域相对小于灾害(如森林火灾)引起的变化区域,其模式通常由许多平滑区域组成。在我们的新CD准则中考虑了这些观测结果,该准则可以有效地减轻现有基于统计和基于差分图像(DI)分析方法所遭受的伪影和斑点噪声。所提出的CD准则相当于一个大规模的非凸优化,首先使用凸松弛技巧重新表述,并在概率意义上解释相关的变化映射,然后采用一种称为交替方向乘法器(ADMM)的高效凸求解器。所得到的概率变化图将更加实用,并且可以将阈值设置为0.5以产生传统的二值图。我们还揭示了所提出的准则与基于di的准则之间的联系,并在定性和定量上证明了我们的完全无监督CD算法的出色性能。
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Unsupervised Change Detection in Multitemporal Multispectral Satellite Images: A Convex Relaxation Approach
Change detection (CD), enabled by multitemporal multispectral satellite imagery, has many important Earth observation missions such as land cover/use monitoring, for which we observe that change regions are relatively smaller than those caused by disaster (e.g., forest fire) with patterns typically composed of a number of smooth regions. These observations are considered in our new CD criterion, which can effectively mitigate the artifacts and speckle noise suffered by existing statistic-based and difference image (DI) analysis based methods. The proposed CD criterion amounts to a large-scale non-convex optimization, which is first reformulated using the convex relaxation trick with associated change map interpreted in the probability sense, followed by adopting an efficient convex solver known as alternating direction method of multipliers (ADMM). The resulted probabilistic change map would be more practical, and can be thresholded at 0.5 to yield the conventional binary-valued one. We also reveal a link between the proposed criterion and the DI-based criterion, and demonstrate the outstanding performance of our fully unsupervised CD algorithm qualitatively and quantitatively.
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